Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms

Allele specific antibody response against the polymorphic system of HLA is the allogeneic response marker determining the immunological risk for graft acceptance before and after organ transplantation and therefore routinely studied during the patient's workup. Experimentally, bead bound antige...

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Main Authors: Angeliki G. Vittoraki, Asimina Fylaktou, Katerina Tarassi, Zafeiris Tsinaris, George Ch. Petasis, Demetris Gerogiannis, Vissal-David Kheav, Maryvonnick Carmagnat, Claudia Lehmann, Ilias Doxiadis, Aliki G. Iniotaki, Ioannis Theodorou
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-07-01
Series:Frontiers in Immunology
Subjects:
HLA
PCA
Online Access:https://www.frontiersin.org/article/10.3389/fimmu.2020.01667/full
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spelling doaj-f5ee5a627971489182e4cda536c990122020-11-25T03:51:30ZengFrontiers Media S.A.Frontiers in Immunology1664-32242020-07-011110.3389/fimmu.2020.01667549007Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning AlgorithmsAngeliki G. Vittoraki0Asimina Fylaktou1Katerina Tarassi2Zafeiris Tsinaris3George Ch. Petasis4Demetris Gerogiannis5Vissal-David Kheav6Maryvonnick Carmagnat7Claudia Lehmann8Ilias Doxiadis9Aliki G. Iniotaki10Ioannis Theodorou11Ioannis Theodorou12National Tissue Typing Center & Immunology Department, General Hospital of Athens “G.Gennimatas”, Athens, GreeceNational Peripheral Histocompatibility Center – Immunology Department, Hippokration General Hospital, Thessaloniki, GreeceImmunology-Histocompatibility Department, “Evangelismos” General Hospital, Athens, GreeceDepartment of Computer Science and Biomedical Informatics, University of Thessaly, Lamia, GreeceNational Peripheral Histocompatibility Center – Immunology Department, Hippokration General Hospital, Thessaloniki, GreeceDepartment of Computer Science & Engineering, University of Ioannina, Ioannina, GreeceLaboratoire d'Immunologie, Hôpital St. Louis, Paris, FranceLaboratoire d'Immunologie, Hôpital St. Louis, Paris, FranceLaboratory for Transplantation Immunology, Institute for Transfusion Medicine, University Hospital Leipzig, Leipzig, GermanyLaboratory for Transplantation Immunology, Institute for Transfusion Medicine, University Hospital Leipzig, Leipzig, GermanyNephrology and Transplantation Unit, Medical School of Athens, Laikon Hospital, Athens, GreeceLaboratoire d'Immunologie, Hôpital St. Louis, Paris, FranceCentre d'Immunologie et des Maladies Infectieuses UPMC UMRS CR7 - Inserm U1135 - CNRS ERL 8255, Paris, FranceAllele specific antibody response against the polymorphic system of HLA is the allogeneic response marker determining the immunological risk for graft acceptance before and after organ transplantation and therefore routinely studied during the patient's workup. Experimentally, bead bound antigen- antibody reactions are detected using a special multicolor flow cytometer (Luminex). Routinely for each sample, antibody responses against 96 different HLA antigen groups are measured simultaneously and a 96-dimensional immune response vector is created. Under a common experimental protocol, using unsupervised clustering algorithms, we analyzed these immune intensity vectors of anti HLA class II responses from a dataset of 1,748 patients before or after renal transplantation residing in a single country. Each patient contributes only one serum sample in the analysis. A population view of linear correlations of hierarchically ordered fluorescence intensities reveals patterns in human immune responses with striking similarities with the previously described CREGs but also brings new information on the antigenic properties of class II HLA molecules. The same analysis affirms that “public” anti-DP antigenic responses are not correlated to anti DR and anti DQ responses which tend to cluster together. Principal Component Analysis (PCA) projections also demonstrate ordering patterns clearly differentiating anti DP responses from anti DR and DQ on several orthogonal planes. We conclude that a computer vision of human alloresponse by use of several dimensionality reduction algorithms rediscovers proven patterns of immune reactivity without any a priori assumption and might prove helpful for a more accurate definition of public immunogenic antigenic structures of HLA molecules. Furthermore, the use of Eigen decomposition on the Immune Response generates new hypotheses that may guide the design of more effective patient monitoring tests.https://www.frontiersin.org/article/10.3389/fimmu.2020.01667/fullHLApatterns detectionallorecognitiontransplantationmonitoringPCA
collection DOAJ
language English
format Article
sources DOAJ
author Angeliki G. Vittoraki
Asimina Fylaktou
Katerina Tarassi
Zafeiris Tsinaris
George Ch. Petasis
Demetris Gerogiannis
Vissal-David Kheav
Maryvonnick Carmagnat
Claudia Lehmann
Ilias Doxiadis
Aliki G. Iniotaki
Ioannis Theodorou
Ioannis Theodorou
spellingShingle Angeliki G. Vittoraki
Asimina Fylaktou
Katerina Tarassi
Zafeiris Tsinaris
George Ch. Petasis
Demetris Gerogiannis
Vissal-David Kheav
Maryvonnick Carmagnat
Claudia Lehmann
Ilias Doxiadis
Aliki G. Iniotaki
Ioannis Theodorou
Ioannis Theodorou
Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
Frontiers in Immunology
HLA
patterns detection
allorecognition
transplantation
monitoring
PCA
author_facet Angeliki G. Vittoraki
Asimina Fylaktou
Katerina Tarassi
Zafeiris Tsinaris
George Ch. Petasis
Demetris Gerogiannis
Vissal-David Kheav
Maryvonnick Carmagnat
Claudia Lehmann
Ilias Doxiadis
Aliki G. Iniotaki
Ioannis Theodorou
Ioannis Theodorou
author_sort Angeliki G. Vittoraki
title Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
title_short Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
title_full Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
title_fullStr Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
title_full_unstemmed Patterns of 1,748 Unique Human Alloimmune Responses Seen by Simple Machine Learning Algorithms
title_sort patterns of 1,748 unique human alloimmune responses seen by simple machine learning algorithms
publisher Frontiers Media S.A.
series Frontiers in Immunology
issn 1664-3224
publishDate 2020-07-01
description Allele specific antibody response against the polymorphic system of HLA is the allogeneic response marker determining the immunological risk for graft acceptance before and after organ transplantation and therefore routinely studied during the patient's workup. Experimentally, bead bound antigen- antibody reactions are detected using a special multicolor flow cytometer (Luminex). Routinely for each sample, antibody responses against 96 different HLA antigen groups are measured simultaneously and a 96-dimensional immune response vector is created. Under a common experimental protocol, using unsupervised clustering algorithms, we analyzed these immune intensity vectors of anti HLA class II responses from a dataset of 1,748 patients before or after renal transplantation residing in a single country. Each patient contributes only one serum sample in the analysis. A population view of linear correlations of hierarchically ordered fluorescence intensities reveals patterns in human immune responses with striking similarities with the previously described CREGs but also brings new information on the antigenic properties of class II HLA molecules. The same analysis affirms that “public” anti-DP antigenic responses are not correlated to anti DR and anti DQ responses which tend to cluster together. Principal Component Analysis (PCA) projections also demonstrate ordering patterns clearly differentiating anti DP responses from anti DR and DQ on several orthogonal planes. We conclude that a computer vision of human alloresponse by use of several dimensionality reduction algorithms rediscovers proven patterns of immune reactivity without any a priori assumption and might prove helpful for a more accurate definition of public immunogenic antigenic structures of HLA molecules. Furthermore, the use of Eigen decomposition on the Immune Response generates new hypotheses that may guide the design of more effective patient monitoring tests.
topic HLA
patterns detection
allorecognition
transplantation
monitoring
PCA
url https://www.frontiersin.org/article/10.3389/fimmu.2020.01667/full
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